论文标题
自适应系统中质量驱动决策的正式模型
A Formal Model for Quality-Driven Decision Making in Self-Adaptive Systems
论文作者
论文摘要
在现代复杂系统中保持可接受的服务质量水平是具有挑战性的,尤其是在存在各种形式的不确定性的情况下,由改变执行环境,不预测的事件等引起的各种形式的不确定性,等等。行为属性。正式方法构成了在这个方向上的有前途有效的解决方案,以便严格指定软件系统的数学模型并分析其行为。它们还在很大程度上被用于分析和提供自适应系统所需功能/非功能性能的保证。因此,我们引入了一个正式的模型,用于在不确定性下质量驱动的自适应系统。我们结合了高级培养皿网和合理的培养皿网,以建模复杂的数据结构,从而实现系统质量属性量化,并通过选择有关系统实际情况的最合理的计划来改善决策过程。
Maintaining an acceptable level of quality of service in modern complex systems is challenging, particularly in the presence of various forms of uncertainty caused by changing execution context, unpredicted events, etc. Although self-adaptability is a well-established approach for modelling such systems, and thus enabling them to achieve functional and/or quality of service objectives by autonomously modifying their behavior at runtime, guaranteeing a continuous satisfaction of quality objectives is still challenging and needs a rigorous definition and analysis of system behavioral properties. Formal methods constitute a promising and effective solution in this direction in order to rigorously specify mathematical models of a software system and to analyze its behavior. They are also largely adopted to analyze and provide guarantees on the required functional/non-functional properties of self-adaptive systems. Therefore, we introduce a formal model for quality-driven self-adaptive systems under uncertainty. We combine high-level Petri nets and plausible Petri nets in order to model complex data structures enabling system quality attributes quantification and to improve the decision-making process through selecting the most plausible plans with regard to the system's actual context.